Euclidean structure from uncalibrated images using fuzzy domain knowledge: application to facial images synthesis

Zhengyou Zhang, K. Isono, S. Akamatsu
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引用次数: 17

Abstract

Use of uncalibrated images has found many applications such as image synthesis. However, it is not easy to specify the desired position of the new image in projective or affine space. This paper proposes to recover Euclidean structure from uncalibrated images using domain knowledge such as distances and angles. The knowledge we have is usually about an object category, but not very precise for the particular object being considered. The variation (fuzziness) is modeled as a Gaussian variable. Six types of common knowledge are formulated. Once we have an Euclidean description, the task to specify the desired position in Euclidean space becomes trivial. The proposed technique is then applied to synthesis of new facial images. A number of difficulties existing in image synthesis are identified and solved. For example, we propose to use edge points to deal with occlusion.
利用模糊领域知识从未校准图像中提取欧几里德结构:在人脸图像合成中的应用
使用未经校准的图像已经发现了许多应用,如图像合成。然而,在投影空间或仿射空间中指定新图像的理想位置并不容易。本文提出利用距离和角度等领域知识从未标定图像中恢复欧几里得结构。我们所拥有的知识通常是关于一个对象类别的,但对于正在考虑的特定对象却不是很精确。变异(模糊性)建模为高斯变量。共有六种类型的常识。一旦我们有了欧几里得描述,在欧几里得空间中指定期望位置的任务就变得微不足道了。然后将该技术应用于新的面部图像的合成。识别并解决了图像合成中存在的一些困难。例如,我们建议使用边缘点来处理遮挡。
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